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IT Data Architect

Identify Solutions
London
2 days ago
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Mid/Senior Data Engineer | Series C Scale-up | $50m raise in 2025(Python,, GCP) | Permanent | London (1 day a week on-site)
Their AI-enabled platform supports over 1,000+ brands worldwide, streamlining business processes like never seen before. Data is the backbone: from APIs and pipelines to governance and observability, their data platform directly powers customer-facing products and AI-driven insights.

Theyre now hiring a Senior Data Engineer to own and shape this platform, building scalable, production-grade systems that become the foundation for global brands.

Greenfield impact inherit a live but early platform, define best practice across structure, testing, observability, and governance.
Direct product impact your APIs, pipelines, and orchestration power the platform that 1,000+ brands rely on every day.
AI at the core work on infrastructure that enables machine learning and intelligent decision-making across commerce.
$50m investment fueled expansion and innovation, backed by world-class investors.
Career trajectory Clear scope to grow into leadership as the data team scales.
Remote-first culture flexibility to work from anywhere

API strategy & development own and scale FastAPI endpoints that deliver real-time access to platform data.
Data pipeline development build ingestion and replication pipelines with best-in-class observability, latency, and resilience.
Platform technical vision influence architecture and orchestration, shaping how the business handles data at scale.
Data quality & governance embed testing, freshness, lineage, and monitoring to ensure reliability and trustworthiness.
Collaboration partner with engineers, product managers, and commercial teams to deliver production-grade solutions.

Python must-have, with production-grade engineering expertise
Salary: 75,000 - 85,000 + Equity, PMI, Strong pension, clear progression routes
Location: Central London (1 day a week onsite)

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